论文标题
探索基于会话建议的纵向影响
Exploring Longitudinal Effects of Session-based Recommendations
论文作者
论文摘要
基于会话的建议是一个问题设置,建议系统的任务仅基于正在进行的会话中观察到的一些用户互动进行合适的项目建议。在这种情况下,缺乏有关个人用户的长期优先信息通常会导致个性化水平有限,因此可能会向许多用户提供一小部分流行项目。通过建议的这种子集的这种重复暴露可能会导致随着时间的推移增强效应,并导致无法帮助用户在理想的程度上发现新内容的系统。 在这项工作中,我们在基于仿真的方法中研究了基于会话建议的潜在纵向效应。具体而言,我们分析了不同类型的算法在多大程度上可能导致浓度效应。我们在音乐领域进行的实验表明,所有研究算法 - 神经和启发式算法 - 可能导致项目覆盖范围较低,并且对项目子集的集中度较高。然而,其他模拟实验还表明,相对简单的重新排列策略,例如,通过避免在音乐领域中重复推荐过多建议,可能有助于解决这个问题。
Session-based recommendation is a problem setting where the task of a recommender system is to make suitable item suggestions based only on a few observed user interactions in an ongoing session. The lack of long-term preference information about individual users in such settings usually results in a limited level of personalization, where a small set of popular items may be recommended to many users. This repeated exposure of such a subset of the items through the recommendations may in turn lead to a reinforcement effect over time, and to a system which is not able to help users discover new content anymore to the desirable extent. In this work, we investigate such potential longitudinal effects of session-based recommendations in a simulation-based approach. Specifically, we analyze to what extent algorithms of different types may lead to concentration effects over time. Our experiments in the music domain reveal that all investigated algorithms---both neural and heuristic ones---may lead to lower item coverage and to a higher concentration on a subset of the items. Additional simulation experiments however also indicate that relatively simple re-ranking strategies, e.g., by avoiding too many repeated recommendations in the music domain, may help to deal with this problem.